Real-time combustion state identification via image processing: A dynamic data-driven approach

Michael Hauser, Yue Li, Jihang Li, A. Ray
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引用次数: 14

Abstract

This paper proposes a framework for analyzing video of physical processes as a paradigm of dynamic data-driven application systems (DDDAS). The algorithms were tested on a combustion system under fuel lean and ultra-lean conditions. The main challenge here is to develop feature extraction and information compression algorithms with low computational complexity such that they can be applied to real-time analysis of video captured by a high-speed camera. In the proposed method, image frames of the video is compressed into a sequence of image features. Then, these image features are mapped to a sequence of symbols by partitioning of the feature space. Finally, a special class of probabilistic finite state automata (PFSA), called D-Markov machines, are constructed from the symbol strings to extract pertinent features representing the embedded dynamic characteristics of the physical process. This paper compares the performance and efficiency of three image feature extraction algorithms: Histogram of Oriented Gradients, Gabor Wavelets, and Fractal Dimension. The k-means clustering algorithm has been used for feature space partitioning. The proposed algorithm has been validated on experimental data in a laboratory environment combustor with a single fuel-injector.
通过图像处理的实时燃烧状态识别:一种动态数据驱动的方法
本文提出了一个分析物理过程视频的框架,作为动态数据驱动应用系统(DDDAS)的范例。在一个燃料稀薄和超稀薄的燃烧系统上对算法进行了测试。这里的主要挑战是开发具有低计算复杂度的特征提取和信息压缩算法,以便它们可以应用于高速摄像机捕获的视频的实时分析。在该方法中,视频的图像帧被压缩成一系列图像特征。然后,通过特征空间的划分,将这些图像特征映射到一系列符号上。最后,从符号串中构造了一类特殊的概率有限状态自动机(PFSA),称为d -马尔可夫机,以提取表征物理过程中嵌入的动态特征的相关特征。本文比较了定向梯度直方图、Gabor小波和分形维数三种图像特征提取算法的性能和效率。k-means聚类算法被用于特征空间划分。该算法在单喷油器燃烧室的实验数据上得到了验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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